Color image retrieval using multispectral random field texture model and color content features

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摘要

This paper describes a color-texture-based image retrieval system for query of an image database to find similar images to a target image. The color-texture information is obtained via modeling with the multispectral simultaneous autoregressive (MSAR) random field model. The general color content characterized by ratios of sample color means is also used. The retrieval process involves segmenting the image into regions of uniform color texture using an unsupervised histogram clustering approach that utilizes the combination of MSAR and color features. The color-texture content, location, area and shape of the segmented regions are used to develop similarity measures describing the closeness of a query image to database images. These attributes are derived from the maximum fitting square and best fitting ellipse to each of the segmented regions. The proposed similarity measure combines all these attributes to rank the closeness of the images. The performance of the system is tested on two databases containing synthetic mosaics of natural textures and natural scenes, respectively.

论文关键词:Color image retrieval,Image based query,Color texture,Multispectral random field models,Similarity metrics,Color-texture segmentation

论文评审过程:Received 29 March 2002, Revised 19 September 2002, Accepted 19 September 2002, Available online 15 February 2003.

论文官网地址:https://doi.org/10.1016/S0031-3203(02)00292-3